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OPTIMAL PID CONTROLLER DESIGN USING ADAPTIVE VURPSO ALGORITHM

机译:自适应VURPSO算法的最优PID控制器设计

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摘要

The purpose of this paper is to improve theVelocity Update Relaxation Particle Swarm Optimization algorithm (VURPSO). The improved algorithm is called Adaptive VURPSO (AVURPSO) algorithm. Then, an optimal design of a Proportional-Integral-Derivative (PID) controller is obtained using the AVURPSO algorithm. An adaptive momentum factor is used to regulate a trade-off between the global and the local exploration abilities in the proposed algorithm. This operation helps the system to reach the optimal solution quickly and saves the computation time. Comparisons on the optimal PID controller design confirm the superiority of AVURPSO algorithm to the optimization algorithms mentioned in this paper namely the VURPSO algorithm, the Ant Colony algorithm, and the conventional approach. Comparisons on the speed of convergence confirm that the proposed algorithm has a faster convergence in a less computation time to yield a global optimum value. The proposed AVURPSO can be used in the diverse areas of optimization problems such as industrial planning, resource allocation, scheduling, decision making, pattern recognition and machine learning. The proposed AVURPSO algorithm is efficiently used to design an optimal PID controller.
机译:本文的目的是改进速度更新松弛粒子群优化算法(VURPSO)。改进的算法称为自适应VURPSO(AVURPSO)算法。然后,使用AVURPSO算法获得比例积分微分(PID)控制器的最佳设计。在所提出的算法中,自适应动量因子用于调节全局和局部勘探能力之间的折衷。此操作有助于系统快速达到最佳解决方案并节省计算时间。最优PID控制器设计的比较证实了AVURPSO算法优于本文提到的优化算法,即VURPSO算法,蚁群算法和常规方法。收敛速度的比较证实,所提出的算法在更少的计算时间内具有更快的收敛速度,从而产生了全局最优值。所提出的AVURPSO可以用于优化问题的各个领域,例如工业计划,资源分配,调度,决策,模式识别和机器学习。所提出的AVURPSO算法可有效地用于设计最佳PID控制器。

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